Real-time monitoring system for attendance and attentiveness in virtual classroom environments

Rishav Jaiswal, Akarsh K. Nair, Jayakrushna Sahoo
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Abstract

With the outbreak of the COVID-19 pandemic, classroom environments have been subjected to revolutionary changes via the employment of virtual classrooms and allied technological advancements. The traditional methodologies are proving to be inefficient in such an environment for teaching as well as managerial tasks. Also considering their cumbersome nature, the need for a newer, stronger, and better model is evident. As of now, many Deep Learning techniques have been employed for the purpose, ranging from the usage of standard object detection APIs or even CNNs and their variants. Our study proposes a model based on SVM embedded on top of embedding vectors combined with a Single-shot detector for real-time monitoring of attendance and attentiveness of students in a virtual classroom set up making use of video feed. A small comparative study between the proposed model and dlib, a standard library for the purpose as well is performed. The results show that our model outperforms dlib methodology significantly with high accuracy and performance efficiency. We had done experimentations on the fer2013 dataset particularly for emotion detection and custom datasets in general. Even though the model performs well in our experimentations, the need for a stronger and better dataset is high for evaluating the model and implementing it in real-life scenarios.
虚拟课堂环境下的出勤和注意力实时监控系统
随着新冠肺炎疫情的爆发,通过虚拟教室的使用和相关技术的进步,教室环境发生了革命性的变化。在这样的教学环境和管理任务中,传统的方法被证明是低效的。此外,考虑到它们笨重的性质,显然需要更新、更强、更好的模型。到目前为止,许多深度学习技术已被用于此目的,从使用标准对象检测api甚至cnn及其变体。我们的研究提出了一种基于嵌入向量的SVM模型,该模型结合了单镜头检测器,用于实时监控使用视频馈送的虚拟教室中学生的出勤率和注意力。对所提出的模型和dlib(一个用于此目的的标准库)进行了小型比较研究。结果表明,该模型具有较高的精度和性能效率,明显优于dlib方法。我们已经在fer2013数据集上做了实验,特别是情感检测和自定义数据集。尽管该模型在我们的实验中表现良好,但对于评估该模型并在现实场景中实现它,需要一个更强大、更好的数据集。
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